螺旋桨
替代模型
强化学习
空气动力学
计算机科学
人工神经网络
忠诚
噪音(视频)
还原(数学)
高保真
人工智能
工程类
数学
机器学习
航空航天工程
电信
图像(数学)
电气工程
海洋工程
几何学
作者
Xin Geng,Peiqing Liu,Tianxiang Hu,Qiulin Qu,Jiahua Dai,Changhao Lyu,Yunsong Ge,R.A.D. Akkermans
标识
DOI:10.1016/j.ast.2023.108288
摘要
In a propeller blade optimization, both aerodynamic and aeroacoustic performance were considered simultaneously. A multi-fidelity sampling scheme was adopted by Transfer Learning (TL) to improve the overall optimization efficiency. A Deep Neural Network (DNN) was selected to map the non-linear relationship between the blade parameters and the aerodynamic/aeroacoustic performance, with the optimization being achieved by implementing a deep reinforcement learning algorithm, namely, Deep Deterministic Policy Gradient (DDPG), upon which a Multi-fidelity DNN based surrogate model (TL-MFDNN) was introduced with Transfer Learning between pre-trained and retrained processes. It was found that, by comparing the TL-MFDNN surrogate model based optimization with DDPG optimization using direct CFD simulation, the overall computing cost can be saved up to 77.3% and the optimized propeller has maximum noise reduction of up to 1.69 dB, with a negligible penalty on propulsive performance.
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